Matrix converter are direct AC/AC converters that directly connect each input phase to each output phase through an array of controlled semiconductors, inherently capable of bidirectional power flow. The main advantage of Matrix Converters is the absence of bulky reactive elements, that are subject to aging, and reduce the system reliability. In addition, Matrix Converter can work with high efficiency levels, that can be further enhanced by adopting a new PMW-based modulation technique, that reduces switching losses. These characteristics, combined with the complete custom design of the hardware components, permit to obtain a converter characterized by an excellent power density value.

A new, water cooled, 250kW, modular Matrix converter with hybrid modulation and intelligent gate drivers

ZORZI, ALVISE
2020

Abstract

Matrix converter are direct AC/AC converters that directly connect each input phase to each output phase through an array of controlled semiconductors, inherently capable of bidirectional power flow. The main advantage of Matrix Converters is the absence of bulky reactive elements, that are subject to aging, and reduce the system reliability. In addition, Matrix Converter can work with high efficiency levels, that can be further enhanced by adopting a new PMW-based modulation technique, that reduces switching losses. These characteristics, combined with the complete custom design of the hardware components, permit to obtain a converter characterized by an excellent power density value.
29-mag-2020
Inglese
MAZZUCCHELLI, MAURIZIO FRANCO
MARCHESONI, MARIO
Università degli studi di Genova
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14242/105702
Il codice NBN di questa tesi è URN:NBN:IT:UNIGE-105702